Abstract
An open-source Network Data Analytics Function compatible with Free5GC integrates a Large Language Model interface for natural language interaction and intent-based network management.
The Network Data Analytics Function (NWDAF) is central to enabling zero-touch network management in fifth-generation (5G) networks by supporting real-time analytics and closed-loop automation. Despite its critical role, open-source NWDAF implementations remain limited in scope and accessibility. In this paper, we develop an open-source NWDAF, compatible with the open-source core network Free5GC, that collects network data via subscriptions to Network Functions (NFs), and also includes an integrated Large Language Model (LLM) interface that enables natural language interaction with human operators. The interface processes user intents, encodes them using a semantic embedding model, and maps them to one of seven predefined intent categories to trigger analytics queries or event subscription commands. This architecture abstracts the complexity of traditional interfaces, allowing non-expert users to manage network analytics and subscriptions with ease. The system supports Access and Management Function (AMF) and Session Management Function (SMF) event subscriptions, real-time monitoring, and analytics retrieval via Prometheus, all accessible through a conversational interface. By bridging AI-driven intent recognition with standardized network analytics, our implementation enhances operator usability and provides a foundation towards AI-native 6G networks. The source code and datasets generated during the current study are available in the github repository, https://github.com/HenokDanielbfg/testbed.
Community
The Network Data Analytics Function (NWDAF) is central to enabling zero-touch network management in fifth-generation
(5G) networks by supporting real-time analytics and closed-loop automation. Despite its critical role, open-source NWDAF
implementations have remained limited in scope and accessibility. In this paper, we develop an open-source NWDAF, compatible
with the open-source core network Free5GC, that collects network data via subscriptions to Network Functions (NFs), and
also includes an integrated Large Language Model (LLM) interface that enables natural language interaction with human
operators. The interface processes user intents, encodes them using a semantic embedding model, and maps them to one of
seven predefined intent categories to trigger analytics queries or event subscription commands. This architecture abstracts the
complexity of traditional interfaces, allowing non-expert users to manage network analytics and subscriptions with ease. The
system supports Access and Management Function (AMF) and Session Management Function (SMF) event subscriptions,
real-time monitoring, and analytics retrieval via Prometheus, all accessible through a conversational interface. By bridging
AI-driven intent recognition with standardized network analytics, our implementation enhances operator usability and provides
a foundation towards AI-native 6G networks.
Neat paper. Bridging the gap between standard network functions like Free5GC and LLM-based intent recognition seems like a practical way to lower the barrier for managing complex network analytics. It is nice to see an open-source implementation for this.
I am curious about the mapping process. Since you are using seven predefined intent categories, how robust is the system when a user's natural language input is ambiguous or falls outside those specific labels?
I made a podcast on it with ResearchPod, it makes it easy to get the key concepts on the go:
https://researchpod.app/episode/f5df2a23-6e81-4de3-9234-dffac5cfe643
This is an automated message from the Librarian Bot. I found the following papers similar to this paper.
The following papers were recommended by the Semantic Scholar API
- Agent
xG
Core: Agentic AI for Next-Generation Mobile Core Network (2026) - 6G Needs Agents: Toward Agentic AI-Native Networks for Autonomous Intelligence (2026)
- Towards Agentic Test-Driven Quality Assurance for 6G Networks (2026)
- Tool Use as Action: Towards Agentic Control in Mobile Core Networks (2026)
- Intent-Based Orchestration in Open RAN: An ns-3 Simulation Framework (2026)
- RAG-driven Multi-Agent LLM Framework with Task Decomposition for Beyond 5G Auto-Configuration (2026)
- Modular Multi-Domain Digital Twin Architecture: Sustainable Intent-Driven 6G Management (2026)
Please give a thumbs up to this comment if you found it helpful!
If you want recommendations for any Paper on Hugging Face checkout this Space
You can directly ask Librarian Bot for paper recommendations by tagging it in a comment: @librarian-bot recommend
Get this paper in your agent:
hf papers read 2606.11877 Don't have the latest CLI?
curl -LsSf https://hf.co/cli/install.sh | bash Models citing this paper 0
No model linking this paper
Datasets citing this paper 1
Spaces citing this paper 0
No Space linking this paper
Collections including this paper 0
No Collection including this paper